1. Asymptotic Randomised Control with applications to bandits
- Author
-
Cohen, Samuel N. and Treetanthiploet, Tanut
- Subjects
Mathematics - Optimization and Control ,Statistics - Machine Learning ,60J20, 93E35, 90C40, 41A58 - Abstract
We consider a general multi-armed bandit problem with correlated (and simple contextual and restless) elements, as a relaxed control problem. By introducing an entropy regularisation, we obtain a smooth asymptotic approximation to the value function. This yields a novel semi-index approximation of the optimal decision process. This semi-index can be interpreted as explicitly balancing an exploration-exploitation trade-off as in the optimistic (UCB) principle where the learning premium explicitly describes asymmetry of information available in the environment and non-linearity in the reward function. Performance of the resulting Asymptotic Randomised Control (ARC) algorithm compares favourably well with other approaches to correlated multi-armed bandits.
- Published
- 2020